Department of Biostatistics and Medical Informatics, Faculty of Medicine, Erzincan Binali Yıldırım University, Erzincan, Turkey.
Department of Physiology, Faculty of Medicine, Erzincan Binali Yıldırım University, Erzincan, Turkey.
Med Gas Res. 2022 Apr-Jun;12(2):60-66. doi: 10.4103/2045-9912.326002.
The coronavirus disease 2019 (COVID-19) epidemic went down in history as a pandemic caused by corona-viruses that emerged in 2019 and spread rapidly around the world. The different symptoms of COVID-19 made it difficult to understand which variables were more influential on the diagnosis, course and mortality of the disease. Machine learning models can accurately assess hidden patterns among risk factors by analyzing large-datasets to quickly predict diagnosis, prognosis and mortality of diseases. Because of this advantage, the use of machine learning models as decision support systems in health services is increasing. The aim of this study is to determine the diagnosis and prognosis of COVID-19 disease with blood-gas data using the Chi-squared Automatic Interaction Detector (CHAID) decision-tree-model, one of the machine learning methods, which is a subfield of artificial intelligence. This study was carried out on a total of 686 patients with COVID-19 (n = 343) and non-COVID-19 (n = 343) treated at Erzincan-Mengücek-Gazi-Training and Research-Hospital between April 1, 2020 and March 1, 2021. Arterial blood gas values of all patients were obtained from the hospital registry system. While the total-accuracyratio of the decision-tree-model was 65.0% in predicting the prognosis of the disease, it was 68.2% in the diagnosis of the disease. According to the results obtained, the low ionized-calcium value (< 1.10 mM) significantly predicted the need for intensive care of COVID-19 patients. At admission, low-carboxyhemoglobin (< 1.00%), high-pH (> 7.43), low-sodium (< 135.0 mM), hematocrit (< 40.0%), and methemoglobin (< 1.30%) values are important biomarkers in the diagnosis of COVID-19 and the results were promising. The findings in the study may aid in the early-diagnosis of the disease and the intensive-care treatment of patients who are severe. The study was approved by the Ministry of Health and Erzincan University Faculty of Medicine Clinical Research Ethics Committee.
2019 年出现的冠状病毒导致的 2019 年冠状病毒病(COVID-19)疫情作为一种大流行疾病而载入史册,并迅速在全球范围内传播。COVID-19 的不同症状使得难以理解哪些变量对疾病的诊断、病程和死亡率影响更大。机器学习模型可以通过分析大型数据集准确评估危险因素之间的隐藏模式,从而快速预测疾病的诊断、预后和死亡率。由于这一优势,机器学习模型作为卫生服务决策支持系统的使用正在增加。本研究旨在使用机器学习方法之一的卡方自动交互检测(CHAID)决策树模型,从血液气体数据中确定 COVID-19 疾病的诊断和预后,该模型是人工智能的一个分支。这项研究是在 2020 年 4 月 1 日至 2021 年 3 月 1 日期间在 Erzincan-Mengücek-Gazi-Training 和 Research-Hospital 治疗的总共 686 例 COVID-19(n = 343)和非 COVID-19(n = 343)患者中进行的。所有患者的动脉血气值均从医院登记系统中获得。虽然决策树模型预测疾病预后的总准确率为 65.0%,但诊断疾病的准确率为 68.2%。根据得出的结果,低离子钙值(<1.10 mM)显著预测 COVID-19 患者需要重症监护。入院时,低碳氧血红蛋白(<1.00%)、高 pH 值(>7.43)、低钠(<135.0 mM)、血细胞比容(<40.0%)和高铁血红蛋白(<1.30%)值是 COVID-19 的重要生物标志物,结果有希望。研究结果可能有助于疾病的早期诊断和重症患者的重症监护治疗。该研究得到了卫生部和 Erzincan 大学医学院临床研究伦理委员会的批准。